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Feature Extraction for Medical CT Images of Sports Tear Injury

机译:体育撕裂损伤医疗CT图像特征提取

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摘要

Analysis of medical CT images directly affects the accuracy of clinical case diagnosis. Therefore, feature extraction problem of medical CT images is extremely important. A feature extraction algorithm for medical CT images of sports tear injury is proposed. First, CT images are decomposed into a low frequency component and a series of high frequency components in different directions by wavelet fast decomposition method. The high- and low-frequency information of CT images is enhanced by wavelet layered multi-directional image enhancement algorithm, and the multi-scale enhancement for medical CT images of sports tear injury is completed. Then, edge of the enhanced CT images is extracted using an image edge extraction algorithm based on extended mathematical morphology. Finally, based on the extracted edge information of CT images, feature extraction for medical CT images of sports tear injury is completed by the NSCT-GLCM based CT image feature extraction algorithm. Research results show that the proposed algorithm effectively extracts CT image features of sports tear injury and provides auxiliary information for doctor diagnosis.
机译:医疗CT图像分析直接影响临床病例诊断的准确性。因此,医疗CT图像的特征提取问题非常重要。提出了一种体育撕裂损伤医疗CT图像特征提取算法。首先,通过小波快速分解方法将CT图像分解成低频分量和不同方向的一系列高频分量。通过小波分层多向图像增强算法增强了CT图像的高频和低频信息,完成了运动撕裂损伤的医疗CT图像的多尺度增强。然后,使用基于扩展数学形态学的图像边缘提取算法提取增强CT图像的边缘。最后,基于CT图像的提取边缘信息,基于NSCT-GLCM基于CT图像特征提取算法完成了运动撕裂损伤的医疗CT图像的特征提取。研究结果表明,该算法有效提取了运动撕裂损伤的CT图像特征,为医生诊断提供了辅助信息。

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